Application of Computer Vision and Pattern Recognition in Automated Quality Inspection of Industrial Products

(1) * Heri Nurdiyanto Mail (Department of Industrial Engineering, Faculty of Engineering, Universitas Negeri Yogyakarta, Indonesia)
(2) Aktansi Kindiasari Mail (Manajemen, Fakultas Ekonomi dan Bisnis, Universitas Terbuka, Indonesia)
(3) Sulistiyanto Sulistiyanto Mail (Manajemen Informatika Politeknik Negeri Sriwijaya, Indonesia)
*corresponding author

Abstract


Quality inspection is a critical process in industrial production to ensure that products meet predefined standards and specifications. Traditionally, quality inspection has relied heavily on manual visual checks, which are time-consuming, subjective, and prone to human error. This study explores the application of computer vision and pattern recognition techniques to develop an automated quality inspection system for industrial products. The proposed system employs high-resolution cameras and image processing algorithms to capture and analyze visual features of products in real-time on the production line. Key techniques utilized include feature extraction, edge detection, and texture analysis to identify defects such as scratches, dents, and dimensional inaccuracies. Pattern recognition algorithms, such as support vector machines (SVM) and convolutional neural networks (CNN), are trained on large datasets of product images to classify items as acceptable or defective with high accuracy. The system was tested on a dataset collected from a manufacturing facility producing metal components. Experimental results demonstrate that the automated system achieved an inspection accuracy of 98%, significantly outperforming manual inspection methods in terms of speed and consistency. Furthermore, the integration of this system into the production line reduced inspection time by approximately 70% and minimized production downtime. This research highlights the potential of intelligent informatics, particularly computer vision and pattern recognition, in enhancing the efficiency, reliability, and scalability of industrial quality control processes. The findings suggest that such automated systems can contribute significantly to the advancement of Industry 4.0 by enabling smart manufacturing practices and reducing dependence on manual labor. Future work will focus on extending the system to handle more complex products and dynamic production environments

   

DOI

https://doi.org/10.29099/ijair.v9i2.1507
      

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